TY - BOOK AU - Agilna K C (41718001) TI - Deep text mining KW - TEXT ANALYTICS KW - CONVOLUTIONAL NEURAL NETWORKS KW - DEEP LEARNING KW - NATURAL LANGUAGE PROCESSING N1 - For decades, humans have dreamed of computers that understand natural language in the form of text or speech. The interaction between human and machine using natural languages is achieved through Natural language processing (NLP) with the help of smart assistants. Natural Language Processing and Text Mining or Text Analytics are Articial Intelligence (AI) technologies that endow users in transforming the key content in text documents into quantiable and actionable insights. Text in the documents is a rampant form of communication. The analyzing and understanding of these text includes multiple tasks which needs to instruct the computer to understand word-sense disambiguation. It addresses toilsome scaling and language challenges where traditional NLP techniques are less eective. Deep Text Mining, a deep learning-based text understanding helps to acquire this task to some extent. Deep text utilizes several deep neural network architectures like convolutional and recurrent neural networks and is able to perform word-level and character-level based learning. Deep learning uses a mathematical concept called word embeddings that preserves the semantic relationship among words. So, when represented properly, the word embedding allows capturing the in-depth semantic meaning of words. Word embedding techiques like GloVe, Word2Vec are euclidean approaches which fails to represent for hierarchical structures. So a better approach for representation of word embeddings is a requisite in the eld of text mining. This work attempts to builds a deep learning model with poincare word embeddings for the task of intent classication ER -